Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Lære Challenge: Unsupervised Metrics | Unsupervised Learning Metrics
Evaluation Metrics in Machine Learning

bookChallenge: Unsupervised Metrics

Opgave

Swipe to start coding

You will perform a full unsupervised model evaluation pipeline, consisting of anomaly detection, dimensionality reduction, and clustering.

Perform the following steps:

1. Anomaly Detection Evaluation

  • Use the make_classification dataset from scikit-learn with strong class imbalance (weights=[0.95, 0.05]).
  • Train an IsolationForest model to detect anomalies.
  • Compute:
    • Precision.
    • Recall.
    • ROC–AUC.

2. Dimensionality Reduction Evaluation

  • Apply PCA to the dataset (2 components).
  • Compute:
    • Explained Variance Ratio.
    • Reconstruction Error between original and inverse-transformed data.

3. Clustering Evaluation

  • Apply KMeans with n_clusters=3 on the PCA-reduced data.
  • Compute:
    • Inertia.
    • Silhouette Score.
    • Davies–Bouldin Score.
    • Calinski–Harabasz Score.

Løsning

Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 3. Kapitel 5
single

single

Spørg AI

expand

Spørg AI

ChatGPT

Spørg om hvad som helst eller prøv et af de foreslåede spørgsmål for at starte vores chat

close

Awesome!

Completion rate improved to 6.25

bookChallenge: Unsupervised Metrics

Stryg for at vise menuen

Opgave

Swipe to start coding

You will perform a full unsupervised model evaluation pipeline, consisting of anomaly detection, dimensionality reduction, and clustering.

Perform the following steps:

1. Anomaly Detection Evaluation

  • Use the make_classification dataset from scikit-learn with strong class imbalance (weights=[0.95, 0.05]).
  • Train an IsolationForest model to detect anomalies.
  • Compute:
    • Precision.
    • Recall.
    • ROC–AUC.

2. Dimensionality Reduction Evaluation

  • Apply PCA to the dataset (2 components).
  • Compute:
    • Explained Variance Ratio.
    • Reconstruction Error between original and inverse-transformed data.

3. Clustering Evaluation

  • Apply KMeans with n_clusters=3 on the PCA-reduced data.
  • Compute:
    • Inertia.
    • Silhouette Score.
    • Davies–Bouldin Score.
    • Calinski–Harabasz Score.

Løsning

Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 3. Kapitel 5
single

single

some-alt